| Literature DB >> 23531234 |
Catherine Cornu1, Behrouz Kassai, Roland Fisch, Catherine Chiron, Corinne Alberti, Renzo Guerrini, Anna Rosati, Gerard Pons, Harm Tiddens, Sylvie Chabaud, Daan Caudri, Clément Ballot, Polina Kurbatova, Anne-Charlotte Castellan, Agathe Bajard, Patrice Nony, Leon Aarons, Agathe Bajard, Clément Ballot, Yves Bertrand, Frank Bretz, Daan Caudri, Charlotte Castellan, Sylvie Chabaud, Catherine Cornu1, Frank Dufour, Cornelia Dunger-Baldauf, Jean-Marc Dupont, Roland Fisch, Renzo Guerrini, Vincent Jullien, Behrouz Kassaï, Patrice Nony, Kayode Ogungbenro, David Pérol, Gérard Pons, Harm Tiddens, Anna Rosati, Corinne Alberti, Catherine Chiron, Polina Kurbatova, Rima Nabbout.
Abstract
BACKGROUND: Small clinical trials are necessary when there are difficulties in recruiting enough patients for conventional frequentist statistical analyses to provide an appropriate answer. These trials are often necessary for the study of rare diseases as well as specific study populations e.g. children. It has been estimated that there are between 6,000 and 8,000 rare diseases that cover a broad range of diseases and patients. In the European Union these diseases affect up to 30 million people, with about 50% of those affected being children. Therapies for treating these rare diseases need their efficacy and safety evaluated but due to the small number of potential trial participants, a standard randomised controlled trial is often not feasible. There are a number of alternative trial designs to the usual parallel group design, each of which offers specific advantages, but they also have specific limitations. Thus the choice of the most appropriate design is not simple.Entities:
Mesh:
Year: 2013 PMID: 23531234 PMCID: PMC3635911 DOI: 10.1186/1750-1172-8-48
Source DB: PubMed Journal: Orphanet J Rare Dis ISSN: 1750-1172 Impact factor: 4.123
Search strategy for the identification of articles on the methods used for small clinical trials
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Figure 1Schematic representation of some randomised clinical trial designs.
Summary of the characteristics of the various randomised, comparative trial designs (it is assumed for all designs that the control group is a placebo)
| Patients are assigned to a treatment group for the duration of the trial. | Randomisation to one of two or more treatment groups, with a pre-specified randomisation ratio. | Design simple to understand and to implement. | Larger sample size often required, compared with other designs. | |
| Treatment groups can have different numbers of patients. | ||||
| Difficulties with recruitment possible, if placebo-controlled. | ||||
| Analysis and interpretation of results is simple. | ||||
| Cannot estimate the contribution of inter- and intra-patient variability to the overall variability. | ||||
| Can answer two or more questions with one trial | Patients are randomised twice, once for treatment A or placebo and then for treatment B or placebo | Time-saving for the trial sponsor | Need to be sure that there is no interaction between treatments A and B | |
| Requires fewer patients to obtain the answer to two or more questions | ||||
| Patient receives both of two treatments, A and B, in a pre-specified sequence. Patients act as their own control. | Randomisation to a pre-specified treatment sequence. | Smaller sample size than parallel groups. | Stable chronic diseases (assumes patient’s state is comparable at the start of both periods of treatment). | |
| Results depending only on within-patient variability. | ||||
| Often used in healthy volunteers (for phase 1 clinical trials) | ||||
| More than two treatments to compare | Randomisation to a pre-specified treatment sequence. | Same as for cross-over design. | Same as for cross-over design, except carry-over is controlled (similar properties as those for Latin square design). | |
| Balanced design, i.e. every treatment (or dose) appears only once in each sequence and each treatment period. | ||||
| Only one patient and design aims to assess effects of several treatments in one individual | The order of treatment(s) and placebo periods are randomly assigned for the patient | Provides an estimate of individual effectiveness (personalized medicine) | Same as for cross-over design. Needs a stable, chronic disease | |
| Patients are more likely to have better adherence to treatment, and understand their disease and treatment better | ||||
| Two phases: initial placebo controlled phase (patients randomised to treatment or placebo) followed by active control phase (all patients receive treatment) – those in the initial placebo group have a delayed start | In first phase, patients randomised to early start group (treatment) or delayed start group (placebo) | Allows more patients to receive active treatment | At the start of the second phase, the patients are not comparable. No real blinding for the second period; carry over effect possible. | |
| Can distinguish effects on symptoms and effects on the disease evolution | ||||
| All patients receive the tested treatment in the end – but have varying lengths of time on placebo. | Randomisation of time from enrolment to starting tested treatment | Can be used for disease-modifying therapies, in diseases with a rapid, unfavourable evolution. All patients receive active treatment | Variable length of placebo period reduces statistical power | |
| Assumes that a response will occur sometime after an effective treatment is given, so that patients who start the treatment earlier should, on average, respond sooner | ||||
| Low and intermediate potency therapies show large variability for response | ||||
| Limited ability to estimate size of treatment effect | ||||
| All patients receive tested treatment in the end. Intervention allocated sequentially to participants (either as individuals or clusters of individuals) | For a 5-step wedge design, all patients start with control then for the following five time periods individual or clusters randomised to treatment to finish in the last period with all patients receiving tested treatment | Useful when there is a prior belief that treatment will do more good than harm | There might be a risk of contamination between intervention participants, and a need for blind assessment of outcome | |
| Also, when an innovation cannot be delivered concurrently to all units | ||||
| Used to assess treatment continuation in patients who are responding to the treatment. | Randomisation of responders to continue treatment or switch to placebo | Reduces the time on placebo since only responders are randomised to placebo. | For use in chronic diseases, Not suitable for unpredictable diseases (e.g. spontaneous remission) or those with slow evolution. The treatment effect is overestimated since only responders are included (and compared to placebo) | |
| All patients initially receive the tested treatment; responders are randomised to continue treatment or to receive placebo | ||||
| Can assess if treatment needs to be continued or can be stopped | ||||
| Possible carry-over effect for adverse effects. | ||||
| Patients withdrawn if they satisfy | Randomisation to active treatment or placebo | Reduces the time on placebo or in treatment failure. | Difficult to define a binary failure/success outcome. | |
| Analyse failure rate, so minimises exposure to ineffective treatment | ||||
| Only short-term efficacy evaluated. | ||||
| Loss of power if significant number of patients ‘escape’ | ||||
| Initial randomised placebo-control phase, a randomised withdrawal stage for responders, and a third randomised phase for placebo non-responders who subsequently respond to treatment | Randomisation to treatment or placebo and randomised withdrawal for responders | Three separate (independent) assessments of efficacy which are then combined (Fisher’s method) to derive a single overall p-value. | Applicable only to chronic conditions where both response to therapy and withdrawal of therapy can be assessed. | |
| Care should be taken to allow the withdrawal phase to be sufficiently long so that the drug can be completely washed out and the clinical effects of therapy reversed. | ||||
| Subjects may barely meet criteria for being a responder and would consequently forgo active treatment even though they may have benefited from it. | ||||
| Since fewer patients may be available in the initial stage of the trial, the ability to precisely determine initial response rates may be less than with a traditional randomized trial design. | ||||
| May be less suited for controlled assessment of safety | ||||
| Fewer patients required compared with parallel group design. | ||||
| Reduces the time on placebo or non-efficacious treatment. | ||||
| May evaluate the efficacy of a therapeutic agent in a particular patient subpopulation when efficacy in the general patient population has already been established. | ||||
| An adaptive randomization design. | The probability of being randomised to one group is modified according to the results obtained with previous patients. It favours the group with favourable results (play the winner), or penalise the group with unfavourable results (drop the looser); it can be generalised to multi-treatment clinical trials, and delayed responses (Generalized drop the looser) | Reduces the number of patients receiving a less effective treatment. | Unequal sample size reduces power. | |
| Need to have binary outcome, (success/failure) | In some situations, the number of patients who have actually received one of the treatments is very low. | |||
| Could improve patient recruitment due to better satisfaction | ||||
Examples of clinical trials that have used the different designs
| • Phosphodiesterase-5 inhibition for pulmonary hypertension in heart failure [ | |
| • Vigabatrin in infantile spasms due to tuberous sclerosis (comparative parallel design) [ | |
| • Stiripentol in Dravet syndrome (placebo controlled parallel design) [ | |
| • Aspirin and simvastatin for pulmonary arterial hypertension [ | |
| • Amantadine in Huntington disease [ | |
| • Oral sildenafil therapy in severe pulmonary artery hypertension [ | |
| • Sirolimus therapy to halt the progression of ADPKD [ | |
| • Plasma exchange for induction and cyclosporine A for maintaining remission in Wegener’s granulomatosis [ | |
| • Assessment of disease flare in patients with systematic lupus erythematosus [ | |
| • Amitriptyline in fibromyalgia [ | |
| • Tramadol to treat chronic cough [ | |
| • L-arginine in ornithine transcarbamylase deficiency carrier [ | |
| • Rasagiline in Parkinson’s Disease [ | |
| • Low dose phenelzine in the chronic fatigue syndrome [ | |
| • Long-term efficacy of HBV vaccine to prevent liver cancer and chronic liver disease [ | |
| • School-based anti-smoking campaign, (delivered by one team of facilitators who travel to each school) | |
| • Sure Start programme in the UK ( | |
| • Withdrawal of hydroxychloroquine sulfate in systemic lupus erythematosus [ | |
| • Etanercept in children with polyarticular juvenile rheumatoid arthritis [ | |
| • Vigabatrin withdrawal randomized study in children with epilepsy [ | |
| • Antipsychotic withdrawal with Alzheimer’s Disease [ | |
| • Stiripentol withdrawal design in children with partial epilepsy [ | |
| • Intravenously golimumab in patients with active rheumatoid arthritis [ | |
| • Pain control for post-operative pain [ | |
| • Etanercept in children with polyarticular juvenile rheumatoid arthritis [ | |
| • Prevention of postoperative venous thromboembolism in digestive surgery [ | |
| • Reduction of maternal-infant transmission of Human Immunodeficiency Virus Type 1 with zidovudine [ | |
| • No example found for the ‘drop the loser’ design |
Figure 2Schematic representation of trial design algorithm.